• DocumentCode
    736595
  • Title

    A multi-agent reinforcement learning based approach to Quality of Experience control in Future Internet networks

  • Author

    Stefano, Battilotti ; Francesco, Delli Priscoli ; Claudio, Gori Giorgi ; Salvatore, Monaco ; Martina, Panfili ; Antonio, Pietrabissa ; Lorenzo, Ricciardi Celsi ; Vincenzo, Suraci

  • Author_Institution
    Department of Computer, Control and Management Engineering "Antonio Ruberti", University of Rome "Sapienza" via Ariosto 25, 00185, Rome, Italy
  • fYear
    2015
  • fDate
    28-30 July 2015
  • Firstpage
    6495
  • Lastpage
    6500
  • Abstract
    In the perspective of the emerging Future Internet framework, the Quality of Experience (QoE) Control functionalities are aimed at approaching the desired QoE level of the applications by dynamically selecting the most appropriate Classes of Service supported by the network. In the present work, this selection is driven by Multi-Agent Reinforcement Learning, namely by the Friend-Q learning algorithm. The proposed dynamic approach differs from the traffic classification approaches found in the literature, where a static assignment of Classes of Service to application instances is performed. All these improvements are aimed at adding a cognition loop to telecommunication networks, by making use of Multi-Agent Reinforcement Learning, and at fostering the intelligent connectivity between applications and networks.
  • Keywords
    Convergence; Games; Heuristic algorithms; Internet; Joints; Learning (artificial intelligence); Quality of service; Class of Service Mapping; Friend-or-Foe Q-Learning; Future Internet; Multi-Agent Reinforcement Learning;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Control Conference (CCC), 2015 34th Chinese
  • Conference_Location
    Hangzhou, China
  • Type

    conf

  • DOI
    10.1109/ChiCC.2015.7260662
  • Filename
    7260662